TeLLMe what you see: using LLMs to explain neurons in vision models
As the role of machine learning models continues to expand across diverse fields, the demand for model interpretability grows. This is particularly crucial for deep learning models, which are often referred to as black boxes, due to their highly nonlinear nature. This paper proposes a novel method f...
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sg-ntu-dr.10356-1742982024-03-29T15:37:36Z TeLLMe what you see: using LLMs to explain neurons in vision models Guertler, Leon Luu Anh Tuan School of Computer Science and Engineering anhtuan.luu@ntu.edu.sg Computer and Information Science Explainable AI LLM Vision network As the role of machine learning models continues to expand across diverse fields, the demand for model interpretability grows. This is particularly crucial for deep learning models, which are often referred to as black boxes, due to their highly nonlinear nature. This paper proposes a novel method for generating and evaluating concise explanations for the behavior of specific neurons in trained vision models. Doing so signifies an important step towards better understanding the decision making in neural networks. Our technique draws inspiration from a recently published framework that utilized GPT-4 for interpretability of language models. Here, we extend and expand the method to vision models, offering interpretations based on both neuron activations and weights in the network. We illustrate our approach using an AlexNet model and ViT trained on ImageNet, generating clear, human-readable explanations. Our method outperforms the current state-of-the-art in both quantitative and qualitative assessments, while also demonstrating superior capacity in capturing polysemic neuron behavior. The findings hold promise for enhancing transparency, trust and understanding in the deployment of deep learning vision models across various domains. Bachelor's degree 2024-03-26T00:47:45Z 2024-03-26T00:47:45Z 2024 Final Year Project (FYP) Guertler, L. (2024). TeLLMe what you see: using LLMs to explain neurons in vision models. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/174298 https://hdl.handle.net/10356/174298 en SCSE23-0758 application/pdf Nanyang Technological University |
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Computer and Information Science Explainable AI LLM Vision network Guertler, Leon TeLLMe what you see: using LLMs to explain neurons in vision models |
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As the role of machine learning models continues to expand across diverse fields, the demand for model interpretability grows. This is particularly crucial for deep learning models, which are often referred to as black boxes, due to their highly nonlinear nature. This paper proposes a novel method for generating and evaluating concise explanations for the behavior of specific neurons in trained vision models. Doing so signifies an important step towards better understanding the decision making in neural networks. Our technique draws inspiration from a recently published framework that utilized GPT-4 for interpretability of language models. Here, we extend and expand the method to vision models, offering interpretations based on both neuron activations and weights in the network. We illustrate our approach using an AlexNet model and ViT trained on ImageNet, generating clear, human-readable explanations. Our method outperforms the current state-of-the-art in both quantitative and qualitative assessments, while also demonstrating superior capacity in capturing polysemic neuron behavior. The findings hold promise for enhancing transparency, trust and understanding in the deployment of deep learning vision models across various domains. |
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Luu Anh Tuan |
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Luu Anh Tuan Guertler, Leon |
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Final Year Project |
author |
Guertler, Leon |
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Guertler, Leon |
title |
TeLLMe what you see: using LLMs to explain neurons in vision models |
title_short |
TeLLMe what you see: using LLMs to explain neurons in vision models |
title_full |
TeLLMe what you see: using LLMs to explain neurons in vision models |
title_fullStr |
TeLLMe what you see: using LLMs to explain neurons in vision models |
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TeLLMe what you see: using LLMs to explain neurons in vision models |
title_sort |
tellme what you see: using llms to explain neurons in vision models |
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Nanyang Technological University |
publishDate |
2024 |
url |
https://hdl.handle.net/10356/174298 |
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